儿童抑郁症的智能手机生态瞬时评估和可穿戴活动跟踪:队列研究。

IF 2 Q3 HEALTH CARE SCIENCES & SERVICES
Jimena Unzueta Saavedra, Emma A Deaso, Margot Austin, Laura Cadavid, Rachel Kraff, Emma E M Knowles
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引用次数: 0

摘要

背景:青少年抑郁症是一个重要的公共卫生问题。抑郁症状的表现在个体之间差异很大,其强度随时间而波动。生态瞬时评估(EMA)提供了一个独特的优势,通过提高生态有效性和减少回忆偏差,允许更准确和细致入微的理解重度抑郁症(MDD)症状。这种方法对抑郁症波动的本质提供了有价值的见解,可以为更个性化和及时的干预提供信息。目的:本研究旨在(1)评估收集基于智能手机的EMA数据以及抑郁症青少年活动和睡眠跟踪的可行性;(2)调查随时间报告的情绪症状的严重程度和变异性;(3)探讨情绪、活动和睡眠之间的关系。方法:36例受试者(重度抑郁症患者23例,正常对照组13例;75% (n=27)女性,平均年龄19.50岁)在两周内完成了每天两次的EMA检查,并使用FitBit Charge 3设备进行持续的活动和睡眠监测。该研究考察了EMA应用程序的可行性、可用性、症状的严重程度和可变性,以及情绪、活动和睡眠之间的关系。我们对数据应用线性混合效应回归来检验变量之间的关系。结果:参与者共完成923次独立签到(平均每个参与者的签到=25.60次)。总体依从率高(91.57%),表明该方法具有较高的可行性。与对照组相比,MDD参与者表现出更大的症状严重程度和变异性(β=34.48, p)。结论:本研究证明了将基于智能手机的EMA与可穿戴活动跟踪相结合在青少年抑郁症患者中的可行性。高依从率支持了该方法的实用性,而EMA数据为抑郁症状的动态特性提供了有价值的见解,特别是与睡眠和生活压力有关的特性。未来的研究应该在更大、更多样化的样本中验证这些发现。在临床上,EMA和可穿戴跟踪可以通过实时捕捉症状变异性和外部影响来增强常规评估,并为个性化干预提供信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Smartphone Ecological Momentary Assessment and Wearable Activity Tracking in Pediatric Depression: Cohort Study.

Background: Adolescent depression is a significant public health concern. The presentation of depressive symptoms varies widely among individuals, fluctuating in intensity over time. Ecological momentary assessment (EMA) offers a unique advantage by enhancing ecological validity and reducing recall bias, allowing for a more accurate and nuanced understanding of major depressive disorder (MDD) symptoms. This methodology provides valuable insights into the fluctuating nature of depression, which could inform more personalized and timely interventions.

Objective: This study aims to (1) evaluate the feasibility of collecting smartphone-based EMA data alongside activity and sleep tracking in adolescents with depression; (2) investigate the severity and variability of mood symptoms reported over time; and (3) explore the relationship between mood, activity, and sleep.

Methods: Thirty-six participants (23 with MDD, 13 unaffected controls; 75% [n=27] female, mean age 19.50 y) completed twice-daily EMA check-ins over 2 weeks, complemented by continuous activity and sleep monitoring using FitBit Charge 3 devices. The study examined feasibility, usability of the EMA app, symptom severity and variability, and relationships between mood, activity, and sleep. We applied linear mixed-effects regression to the data to examine relationships between variables.

Results: Participants completed a total of 923 unique check-ins (mean check-ins per participant=25.60). Overall compliance rates were high (91.57%), indicating the approach is highly feasible. MDD participants demonstrated greater symptom severity and variability over time compared with controls (β=34.48, P<.001). Individuals with MDD exhibited greater diurnal variation (β=-2.54, P<.001) with worse mood in the morning and worse mood than anxiety scores over time (β=-6.93, P<.001). Life stress was a significant predictor of more severe EMA scores (β=24.50, P<.001). MDD cases exhibited more inconsistent sleep patterns (β=32.14, P<.001), shorter total sleep times (β=-94.38, P<.001), and a higher frequency of naps (β=14.05, P<.001). MDD cases took fewer steps per day (mean 5828.64, SD 6188.85) than controls (mean 7088.47, SD 5378.18) over the course of the study, but this difference was not significant (P=.33), and activity levels were not significantly predictive of EMA score (P=.75).

Conclusions: This study demonstrates the feasibility of integrating smartphone-based EMA with wearable activity tracking in adolescents with depression. High compliance rates support the practicality of this approach, while EMA data provide valuable insights into the dynamic nature of depressive symptoms, particularly in relation to sleep and life stress. Future studies should validate these findings in larger, more diverse samples. Clinically, EMA and wearable tracking may enhance routine assessments and inform personalized interventions by capturing symptom variability and external influences in real time.

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来源期刊
JMIR Formative Research
JMIR Formative Research Medicine-Medicine (miscellaneous)
CiteScore
2.70
自引率
9.10%
发文量
579
审稿时长
12 weeks
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